Abstract

Oil spills bring great damage to the environment and, in particular, to coastal ecosystems. The ability of identifying them accurately is important to prompt oil spill response. We propose a semi-automatic oil spill detection method, where texture analysis, machine learning, and adaptive thresholding are used to process X-band marine radar images. Coordinate transformation and noise reduction are first applied to the sampled radar images, coarse measurements of oil spills are then subjected to texture analysis and machine learning. To identify the loci of oil spills, a texture index calculated by four textural features of a grey level co-occurrence matrix is proposed. Machine learning methods, namely support vector machine, k-nearest neighbor, linear discriminant analysis, and ensemble learning are adopted to extract the coarse oil spill areas indicated by the texture index. Finally, fine measurements can be obtained by using adaptive thresholding on coarsely extracted oil spill areas. Fine measurements are insensitive to the results of coarse measurement. The proposed oil spill detection method was used on radar images that were sampled after an oil spill accident that occurred in the coastal region of Dalian, China on 21 July 2010. Using our processing method, thresholds do not have to be set manually and oil spills can be extracted semi-automatically. The extracted oil spills are accurate and consistent with visual interpretation.

Highlights

  • Oil spills can result in immediate and long-term environmental damage that can last for decades

  • The low noise images are helpful for oil spill detection by textural analysis

  • On the image of proposed texture index, several areas were selected for machine learning training and they are plotted on Figure 18

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Summary

Introduction

Oil spills can result in immediate and long-term environmental damage that can last for decades. Quick and accurate oil spill detection is a critical step for oil spill cleaning. The marine radar images used in this study are convenient and expedient to obtain. The intensity of the backscattered signal in an oil spill area is weaker than in the neighboring waters, a phenomenon that can be exploited to detect oil spills [7]. Several commercial systems have been developed, such as the oil spill detection (OSD) system of Miros (Norwegian company) [8,9], the SeaDarQ radar system of Nortek Netherlands [10], and the sigma S6 OSD system of Rutter (Canada company) [11], oil spill extraction methods are seldom publicized due to commercial competition

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